Machine Learning
Computer science researchers have created an automated method to assemble story-driven photo albums from an unsorted group of images. |
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Taking photos has never been easier, thanks to the ubiquity of mobile phones, tablets and digital cameras. However, editing a mass of vacation photos into an album remains a chore. A new automated method developed by Disney Research could ease that task while also telling a compelling story.
The method developed by a team led by Leonid Sigal, senior research scientist at Disney Research, attempts to not only select photos based on quality and relevance, but also to order them in a way that makes narrative sense.
"Professional photographers, whether they are assembling a wedding album or a photo slideshow, know that the strict chronological order of the photos is often less important than the story that is being told," Sigal said. "But this process can be laborious, particularly when large photo collections are involved. So we looked for ways to automate it."
Sigal and his collaborators presented their findings at WACV 2015, the IEEE Winter Conference on Applications of Computer Vision, in Waikoloa Beach, Hawaii. Others involved include Disney Research's Rafael Tena, Fereshteh Sadeghi, a computer science PhD student at the University of Washington and Ali Farhadi, assistant professor of computer science and engineering at the University of Washington.
The team looked at ways of arranging vacation photos into a coherent album. Previous efforts on automated album creation have relied on arranging photos based largely on chronology and geo-tagging, Sigal noted.
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The researchers used a machine learning algorithm to enable the system to learn how humans use those features and what rules they use to assemble photo albums. The training sets used for this purpose were created for the study from thousands of photos from Flickr. These included 63 image collections in five topic areas: trips to Disney theme parks, beach vacations and trips to London, Paris and Washington, D.C. Each collection was annotated by four people, who were asked to assemble five-photo albums that told stories and to group images into sets of near duplicates.
The system relies purely on visual information for features and exemplar album annotations to drive the machine learning procedure.
Once the system learned the principles of selecting and ordering photos, it was able to compose photo albums from unordered and untagged collections of photos. Sigal noted that such a system also can learn the preferences of individuals, in assembling these collections, to customize the album creation process.
SOURCE Disney Research via EurekAlert
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